Spotlight presentation
in
Workshop: Physics for Machine Learning
Multi-Scale Message Passing Neural PDE Solvers
LĂ©onard Equer
Abstract:
We propose a novel multi-scale message passing neural network algorithm for learning the solutions of time-dependent PDEs. Our algorithm possesses both temporal and spatial multi-scale resolution features by incorporating multi-scale sequence models and graph gating modules in the encoder and processor, respectively. Benchmark numerical experiments are presented to demonstrate that the proposed algorithm outperforms baselines, particularly on a PDE with a range of spatial and temporal scales.
Chat is not available.